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Multi-space-enabled deep learning of breast tumors improves prediction of distant recurrence risk

机译:支持多空间的乳腺肿瘤深度学习,提高了远程复发风险的预测

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In this study, we proposed a multi-space-enabled deep learning modeling method for predicting Oncotype DX recurrence risk categories from digital mammogram images on breast cancer patients. Our study included 189 estrogen receptor-positive (ER+) and node-negative invasive breast cancer patients, who all have Oncotype DX recurrence risk score available. Breast tumors were segmented manually by an expert radiologist. We built a 3- channel convolutional neural network (CNN) model that accepts three-space tumor data: the spatial intensity information and the phase and amplitude components in the frequency domain. We compared this multi-space model to a baseline model that is based on sorely the intensity information. Classification accuracy is based on 5- fold cross-validation and average area-under the receiver operating characteristics curve (AUC). Our results showed that the 3-channel multi-space CNN model achieved a statistically significant improvement than the baseline model.
机译:在这项研究中,我们提出了一种支持多个空间的深度学习建模方法,用于预测来自数字乳房X型乳腺癌患者的数码乳房图像图像的同等型DX复发风险类别。我们的研究包括189名雌激素受体阳性(ER +)和节点阴性侵袭性乳腺癌患者,他们都有型DX复发风险评分。通过专家放射科医生手动进行乳腺肿瘤。我们构建了一个3通道卷积神经网络(CNN)模型,接受三个空间肿瘤数据:空间强度信息和频域中的相位和幅度分量。我们将该多个空间模型与基于强度信息的基线模型进行了比较到基线模型。分类准确性基于5倍的交叉验证和平均区域 - 在接收器操作特性曲线(AUC)下。我们的研究结果表明,3通道多空间CNN模型实现了比基线模型的统计上显着的改进。

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